Topic: network-pruning Goto Github
Some thing interesting about network-pruning
Some thing interesting about network-pruning
network-pruning,Code for "EigenDamage: Structured Pruning in the Kronecker-Factored Eigenbasis" https://arxiv.org/abs/1905.05934
User: alecwangcq
network-pruning,Lookahead: A Far-sighted Alternative of Magnitude-based Pruning (ICLR 2020)
Organization: alinlab
Home Page: https://openreview.net/forum?id=ryl3ygHYDB
network-pruning,Code for the project "SNIP: Single-Shot Network Pruning"
User: aygong
network-pruning,Tensorflow codes for "Rethinking the Smaller-Norm-Less-Informative Assumption in Channel Pruning of Convolution Layers"
User: bobye
network-pruning,Sparse variational droput in tensorflow2
User: cerphilly
network-pruning,(CVPR 2021, Oral) Dynamic Slimmable Network
User: changlin31
network-pruning,In this repository using the sparse training, group channel pruning and knowledge distilling for YOLOV4,
User: chumingqian
network-pruning,Rethinking the Value of Network Pruning (Pytorch) (ICLR 2019)
User: eric-mingjie
network-pruning,
User: frankwang345
network-pruning,CAE-ADMM: Implicit Bitrate Optimization via ADMM-Based Pruning in Compressive Autoencoders
User: haimengzhao
Home Page: https://arxiv.org/abs/1901.07196
network-pruning,PAGCP for the compression of YOLOv5
User: hankye
network-pruning,Cheng-Hao Tu, Jia-Hong Lee, Yi-Ming Chan and Chu-Song Chen, "Pruning Depthwise Separable Convolutions for MobileNet Compression," International Joint Conference on Neural Networks, IJCNN 2020, July 2020.
Organization: ivclab
network-pruning,Knowledge distillation from Ensembles of Iterative pruning (BMVC 2020)
User: lehduong
network-pruning,Pytorch implementation of our paper (TNNLS) -- Pruning Networks with Cross-Layer Ranking & k-Reciprocal Nearest Filters
User: lmbxmu
Home Page: https://arxiv.org/abs/2202.07190
network-pruning,A simple and effective LLM pruning approach.
Organization: locuslab
Home Page: https://arxiv.org/abs/2306.11695
network-pruning,The official code for our ACCV2022 poster paper: Network Pruning via Feature Shift Minimization.
User: lscgx
network-pruning,This repository contains a Pytorch implementation of the article "The Lottery Ticket Hypothesis: Finding Sparse, Trainable Neural Networks" and an application of this hypothesis to reinforcement learning
User: mahkons
network-pruning,[ICLR 2020]: 'AtomNAS: Fine-Grained End-to-End Neural Architecture Search'
User: meijieru
network-pruning,Collection of recent methods on (deep) neural network compression and acceleration.
User: mingsun-tse
network-pruning,[ICLR'23] Trainability Preserving Neural Pruning (PyTorch)
User: mingsun-tse
network-pruning,[Preprint] Why is the State of Neural Network Pruning so Confusing? On the Fairness, Comparison Setup, and Trainability in Network Pruning
User: mingsun-tse
network-pruning,SNIP: SINGLE-SHOT NETWORK PRUNING BASED ON CONNECTION SENSITIVITY
User: namhoonlee
network-pruning,:ring: Efficient tensor-based filter pruning
User: pvtien96
Home Page: https://github.com/pvtien96/CORING
network-pruning,This repository contains a Pytorch implementation of the paper "The Lottery Ticket Hypothesis: Finding Sparse, Trainable Neural Networks" by Jonathan Frankle and Michael Carbin that can be easily adapted to any model/dataset.
User: rahulvigneswaran
network-pruning,Pruning neural networks directly with back-propagation
Organization: rist-ro
network-pruning,LSTM, NLP task에 대한 lt hypothesis의 범용성을 검증하는 연구입니다.
User: seoyoungh
network-pruning,Counting currency from video using RepNet as a base model.
User: srinath2022
Home Page: https://ucladeepvision.github.io/CS269-projects-2022spring/2022/06/10/team12-visual-counting.html
network-pruning,Implementation of Autoslim using Tensorflow2
User: sseung0703
network-pruning,
Organization: statsml
network-pruning,Reducing the computational overhead of Deep CNNs through parameter pruning and tensor decomposition.
User: tarujg
network-pruning,Channel-Prioritized Convolutional Neural Networks for Sparsity and Multi-fidelity
User: twcmchang
network-pruning,[NeurIPS 2023] Structural Pruning for Diffusion Models
User: vainf
network-pruning,[CVPR 2023] Towards Any Structural Pruning; LLMs / SAM / Diffusion / Transformers / YOLOv8 / CNNs
User: vainf
Home Page: https://arxiv.org/abs/2301.12900
network-pruning,Efficient Sparse-Winograd Convolutional Neural Networks (ICLR 2018)
User: xingyul
network-pruning,Improved Implementation of Single Shot MultiBox Detector, RefineDet and Network Optimization in Pytorch 07/2018
User: xuhuaking
network-pruning,Code for "Co-Evolutionary Compression for Unpaired Image Translation" (ICCV 2019), "SCOP: Scientific Control for Reliable Neural Network Pruning" (NeurIPS 2020) and “Manifold Regularized Dynamic Network Pruning” (CVPR 2021).
User: yehuitang
network-pruning,[TPAMI 2022, NeurIPS 2020] Code release for "Deep Multimodal Fusion by Channel Exchanging"
User: yikaiw
network-pruning,Network Pruning
User: zeyuanyin
network-pruning,[TPAMI 2024] This is the official repository for our paper: ''Pruning Self-attentions into Convolutional Layers in Single Path''.
Organization: ziplab
network-pruning, [ICCV 2017] Learning Efficient Convolutional Networks through Network Slimming
Organization: zjcv
network-pruning,[NIPS 2016] Learning Structured Sparsity in Deep Neural Networks
Organization: zjcv
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